—With the advancements of neural networks, customized accelerators are increasingly adopted in massive AI applications. To gain higher energy efficiency or performance, many hardware design optimizations such as near-threshold logic or overclocking can be utilized. In these cases, computing errors may happen and the computing errors are difficult to be captured by conventional training on general purposed processors (GPPs). Applying the offline trained neural network models to the accelerators with errors directly may lead to considerable prediction accuracy loss. To address this problem, we explore the resilience of neural network models and relax the accelerator design constraints to enable aggressive design options. First of all, we prop...
Although Resistive RAMs can support highly efficient matrix-vector multiplication, which is very use...
Deep neural networks have achieved phenomenal successes in vision recognition tasks, which motivate ...
International audienceThe implementation of Artificial Neural Networks(ANNs) using analog Non-Volati...
—With the advancements of neural networks, customized accelerators are increasingly adopted in massi...
Machine Learning (ML) is making a strong resurgence in tune with the massive generation of unstructu...
Many error resilient applications can be approximated using multi-layer perceptrons (MLPs) with insi...
International audienceIn this article, we propose a technique for improving the efficiency of convol...
The resurgence of machine learning in various applications and it's inherent compute-intensive natur...
International audienceFor many types of integrated circuits, accepting larger failure rates in compu...
Owing to the presence of large values, which we call outliers, conventional methods of quantization ...
Charged particle accelerators support a wide variety of scientific, industrial, and medical applicat...
The use of neural networks, machine learning, or artificial intelligence, in its broadest and most c...
The entangled guardbands in terms of timing specification and energy budget ensure a system against ...
Recently, ReRAM-based hardware accelerators showed unprecedented performance compared the digital ac...
Neural Nets(NN) have been described as a solut,ion looking for a problem. In the last conference, Ar...
Although Resistive RAMs can support highly efficient matrix-vector multiplication, which is very use...
Deep neural networks have achieved phenomenal successes in vision recognition tasks, which motivate ...
International audienceThe implementation of Artificial Neural Networks(ANNs) using analog Non-Volati...
—With the advancements of neural networks, customized accelerators are increasingly adopted in massi...
Machine Learning (ML) is making a strong resurgence in tune with the massive generation of unstructu...
Many error resilient applications can be approximated using multi-layer perceptrons (MLPs) with insi...
International audienceIn this article, we propose a technique for improving the efficiency of convol...
The resurgence of machine learning in various applications and it's inherent compute-intensive natur...
International audienceFor many types of integrated circuits, accepting larger failure rates in compu...
Owing to the presence of large values, which we call outliers, conventional methods of quantization ...
Charged particle accelerators support a wide variety of scientific, industrial, and medical applicat...
The use of neural networks, machine learning, or artificial intelligence, in its broadest and most c...
The entangled guardbands in terms of timing specification and energy budget ensure a system against ...
Recently, ReRAM-based hardware accelerators showed unprecedented performance compared the digital ac...
Neural Nets(NN) have been described as a solut,ion looking for a problem. In the last conference, Ar...
Although Resistive RAMs can support highly efficient matrix-vector multiplication, which is very use...
Deep neural networks have achieved phenomenal successes in vision recognition tasks, which motivate ...
International audienceThe implementation of Artificial Neural Networks(ANNs) using analog Non-Volati...